• 제목/요약/키워드: IIR evaluation model

검색결과 2건 처리시간 0.018초

Interactive Information Retrieval: An Introduction

  • Borlund, Pia
    • Journal of Information Science Theory and Practice
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    • 제1권3호
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    • pp.12-32
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    • 2013
  • The paper introduces the research area of interactive information retrieval (IIR) from a historical point of view. Further, the focus here is on evaluation, because much research in IR deals with IR evaluation methodology due to the core research interest in IR performance, system interaction and satisfaction with retrieved information. In order to position IIR evaluation, the Cranfield model and the series of tests that led to the Cranfield model are outlined. Three iconic user-oriented studies and projects that all have contributed to how IIR is perceived and understood today are presented: The MEDLARS test, the Book House fiction retrieval system, and the OKAPI project. On this basis the call for alternative IIR evaluation approaches motivated by the three revolutions (the cognitive, the relevance, and the interactive revolutions) put forward by Robertson & Hancock-Beaulieu (1992) is presented. As a response to this call the 'IIR evaluation model' by Borlund (e.g., 2003a) is introduced. The objective of the IIR evaluation model is to facilitate IIR evaluation as close as possible to actual information searching and IR processes, though still in a relatively controlled evaluation environment, in which the test instrument of a simulated work task situation plays a central part.

디지털 IIR Filter와 Deep Learning을 이용한 ECG 신호 예측을 위한 성능 평가 (Performance Evaluation for ECG Signal Prediction Using Digital IIR Filter and Deep Learning)

  • 윤의중
    • 문화기술의 융합
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    • 제9권4호
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    • pp.611-616
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    • 2023
  • 심전도(electrocardiogram, ECG)는 심박동의 속도와 규칙성, 심실의 크기와 위치, 심장 손상 여부를 측정하는데 사용되며, 모든 심장질환의 원인을 찾아낼 수 있다. ECG-KIT를 이용하여 획득한 ECG 신호는 ECG 신호에 잡음을 포함하기 때문에 딥러닝에 적용하기 위해서는 ECG 신호에서 잡음을 제거해야만 한다. 본 논문에서는, ECG 신호에서 잡음은 Digital IIR Butterworth의 저역 통과 필터를 이용하여 제거하였다. LSTM의 딥러닝 모델을 사용하여 3가지 활성화 함수인 sigmoid(), ReLU(), tanh() 함수에 대한 성능 평가를 비교했을 때, 오차가 가장 작은 활성화 함수는 tanh() 함수 임을 확인하였으며, 또한 LSTM과 GRU 모델에 대한 성능 평가와 경과 시간을 비교한 결과 GRU 모델이 LSTM 모델보다 우수한 것을 확인하였다.